# Anthropic

All functionality related to Anthropic models.

[Anthropic](https://www.anthropic.com/) is an AI safety and research company, and is the creator of Claude.
This page covers all integrations between Anthropic models and LangChain.

## Prompting Overview

Claude is chat-based model, meaning it is trained on conversation data.
However, it is a text based API, meaning it takes in single string.
It expects this string to be in a particular format.
This means that it is up the user to ensure that is the case.
LangChain provides several utilities and helper functions to make sure prompts that you write -
whether formatted as a string or as a list of messages - end up formatted correctly.

Specifically, Claude is trained to fill in text for the Assistant role as part of an ongoing dialogue
between a human user (`Human:`) and an AI assistant (`Assistant:`). Prompts sent via the API must contain
`\n\nHuman:` and `\n\nAssistant:` as the signals of who's speaking.
The final turn must always be `\n\nAssistant:` - the input string cannot have `\n\nHuman:` as the final role.

Because Claude is chat-based but accepts a string as input, it can be treated as either a LangChain `ChatModel` or `LLM`.
This means there are two wrappers in LangChain - `ChatAnthropic` and `Anthropic`.
It is generally recommended to use the `ChatAnthropic` wrapper, and format your prompts as `ChatMessage`s (we will show examples of this below).
This is because it keeps your prompt in a general format that you can easily then also use with other models (should you want to).
However, if you want more fine-grained control over the prompt, you can use the `Anthropic` wrapper - we will show and example of this as well.
The `Anthropic` wrapper however is deprecated, as all functionality can be achieved in a more generic way using `ChatAnthropic`.

## Prompting Best Practices

Anthropic models have several prompting best practices compared to OpenAI models.

**No System Messages**

Anthropic models are not trained on the concept of a "system message".
We have worked with the Anthropic team to handle them somewhat appropriately (a Human message with an `admin` tag)
but this is largely a hack and it is recommended that you do not use system messages.

**AI Messages Can Continue**

A completion from Claude is a continuation of the last text in the string which allows you further control over Claude's output.
For example, putting words in Claude's mouth in a prompt like this:

`\n\nHuman: Tell me a joke about bears\n\nAssistant: What do you call a bear with no teeth?`

This will return a completion like this `A gummy bear!` instead of a whole new assistant message with a different random bear joke.


## `ChatAnthropic`

`ChatAnthropic` is a subclass of LangChain's `ChatModel`, meaning it works best with `ChatPromptTemplate`.
You can import this wrapper with the following code:

```
from langchain.chat_models import ChatAnthropic
model = ChatAnthropic()
```

When working with ChatModels, it is preferred that you design your prompts as `ChatPromptTemplate`s.
Here is an example below of doing that:

```
from langchain.prompts import ChatPromptTemplate

prompt = ChatPromptTemplate.from_messages([
    ("system", "You are a helpful chatbot"),
    ("human", "Tell me a joke about {topic}"),
])
```

You can then use this in a chain as follows:

```
chain = prompt | model
chain.invoke({"topic": "bears"})
```

How is the prompt actually being formatted under the hood? We can see that by running the following code

```
prompt_value = prompt.format_prompt(topic="bears")
model.convert_prompt(prompt_value)
```

This produces the following formatted string:

```
'\n\nYou are a helpful chatbot\n\nHuman: Tell me a joke about bears\n\nAssistant:'
```

We can see that under the hood LangChain is not appending any prefix/suffix to `SystemMessage`'s. This is because Anthropic has no concept of `SystemMessage`.
Anthropic requires all prompts to end with assistant messages. This means if the last message is not an assistant message, the suffix `Assistant:` will automatically be inserted.

If you decide instead to use a normal PromptTemplate (one that just works on a single string) let's take a look at
what happens:

```
from langchain.prompts import PromptTemplate

prompt = PromptTemplate.from_template("Tell me a joke about {topic}")
prompt_value = prompt.format_prompt(topic="bears")
model.convert_prompt(prompt_value)
```

This produces the following formatted string:

```
'\n\nHuman: Tell me a joke about bears\n\nAssistant:'
```

We can see that it automatically adds the Human and Assistant tags.
What is happening under the hood?
First: the string gets converted to a single human message. This happens generically (because we are using a subclass of `ChatModel`).
Then, similarly to the above example, an empty Assistant message is getting appended.
This is Anthropic specific.

## [Deprecated] `Anthropic`

This `Anthropic` wrapper is subclassed from `LLM`.
We can import it with:

```
from langchain.llms import Anthropic
model = Anthropic()
```

This model class is designed to work with normal PromptTemplates. An example of that is below:

```
prompt = PromptTemplate.from_template("Tell me a joke about {topic}")
chain = prompt | model
chain.invoke({"topic": "bears"})
```

Let's see what is going on with the prompt templating under the hood!

```
prompt_value = prompt.format_prompt(topic="bears")
model.convert_prompt(prompt_value)
```

This outputs the following

```
'\n\nHuman: Tell me a joke about bears\n\nAssistant: Sure, here you go:\n'
```

Notice that it adds the Human tag at the start of the string, and then finishes it with `\n\nAssistant: Sure, here you go:`.
The extra `Sure, here you go` was added on purpose by the Anthropic team.

What happens if we have those symbols in the prompt directly?

```
prompt = PromptTemplate.from_template("Human: Tell me a joke about {topic}")
prompt_value = prompt.format_prompt(topic="bears")
model.convert_prompt(prompt_value)
```

This outputs:

```
'\n\nHuman: Tell me a joke about bears'
```

We can see that we detect that the user is trying to use the special tokens, and so we don't do any formatting.

## `ChatAnthropicMessages` (Beta)

`ChatAnthropicMessages` uses the beta release of Anthropic's new Messages API.

You can use it from the `langchain-anthropic` package, which you can install with `pip install langchain-anthropic`.

For more information, see the [ChatAnthropicMessages docs](../chat/anthropic#chatanthropicmessages)